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Beliefs, Actions, and Characteristics of Teachers

Gifted Girls: Gender Bias in Gifted Referrals

Pages 170-181 | Received 13 Oct 2009, Accepted 23 Mar 2010, Published online: 17 Jun 2011
 

Abstract

The goal of this mixed-methods study was to explore the effect of gender on teachers' willingness to refer students to a gifted and talented program. Teachers (N = 28) were provided with one of two profiles (i.e., female or male) describing a gifted student. Results indicated that teachers' decisions for referral to gifted programs were significantly influenced by the student's gender; teachers were much less willing to refer a female student than an identically described male student to gifted programs. Further, qualitative analysis revealed that teachers' descriptions of students and reasons for their referral decisions differed considerably based on the student's gender. Responses illustrated gender bias in teachers' perceptions, expectations, and beliefs about the profiled students. Implications for practice are discussed.

Notes

1The profiles used in the current study were designed to examine differences in teachers' referrals by gender; therefore, we did not introduce other confounding variables such as diverse racial and ethnic backgrounds since there is a significant body of literature demonstrating teacher bias in this regard; see, for example, CitationFord (1996) and CitationFord et al. (2008).

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